具有截面相关性的动态面板的共同相关效应估计

Common Correlated Effects Estimation of Dynamic Panels with Cross-Sectional Dependence

Econometric Reviews · 2014
被引 112 · 同刊同年前 4%
人大 A-ABS 3

中文导读

研究了动态面板数据模型在误差截面相关下的估计量不一致性,发现共同相关效应估计量(CCEP)在T足够大时可用,N的大小影响较小。

Abstract

We derive inconsistency expressions for dynamic panel data estimators under error cross-sectional dependence generated by an unobserved common factor in both the fixed effect and the incidental trends case. We show that for a temporally dependent factor, the standard within groups (WG) estimator is inconsistent even as both N and T tend to infinity. Next we investigate the properties of the common correlated effects pooled (CCEP) estimator of Pesaran (2006) which eliminates the error cross-sectional dependence using cross-sectional averages of the data. In contrast to the static case, the CCEP estimator is only consistent when next to N also T tends to infinity. It is shown that for the most relevant parameter settings, the inconsistency of the CCEP estimator is larger than that of the infeasible WG estimator, which includes the common factors as regressors. Restricting the CCEP estimator results in a somewhat smaller inconsistency. The small sample properties of the various estimators are analyzed using Monte Carlo experiments. The simulation results suggest that the CCEP estimator can be used to estimate dynamic panel data models provided T is not too small. The size of N is of less importance.

动态面板共同相关效应估计截面相依CCEP估计量